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基于零点分布特征的自耦变压器绕组故障诊断OA

Autotransformer winding fault diagnosis based on zero point distribution characteristics

中文摘要英文摘要

绕组故障是变压器发生事故的主要原因之一,有效掌握变压器绕组状态具有重要意义.文中针对自耦变压器(autotransformer,AT)绕组故障诊断开展研究.首先,搭建试验平台模拟AT多种典型的绕组单一故障及多重故障,测试得到不同故障类型、程度下的频率响应;其次,利用快速矢量匹配法拟合得到绕组正常及故障下AT绕组系统的传递函数,从而得到极坐标形式下的零点分布图;然后,对零点分布图进行灰度差分统计(gray level difference statistics,GLDS)特征和灰度梯度共生矩阵(gray-gradient co-occurrence matrix,GGCM)特征的提取,并结合基于粒子群优化(particle swarm optimization,PSO)的随机森林(random forest,RF)算法实现对故障绕组和故障类型的分类;最后,基于实际AT故障案例对所提方法进行验证分析.结果表明,综合幅频和相频信息、通过快速矢量匹配拟合获取的极坐标形式下的零点分布图可捕捉到原始频响曲线中的较小差异;相较于布谷鸟算法、遗传算法等优化算法,基于PSO的RF算法对AT故障绕组和故障类型的识别准确率始终保持在 93%以上,并且在实际AT故障案例中,文中所提诊断方法的分析结果与吊罩检修结果一致.

Winding failures are recognized as one of the primary causes of transformer accidents,making effective monitoring of winding conditions crucial.A study on autotransformer(AT)winding faults diagnosis is conducted through the following procedure.Firstly,an experimental platform is established to simulate typical single and combined winding faults in autotransformers,through which frequency responses under various fault conditions are tested.Subsequently,a fast vector matching method is employed to fit transfer functions of winding systems under normal and faulty states,from which zero point distribution diagrams in polar coordinates are derived.Then,the gray level difference statistical(GLDS)features and gray-gradient co-occurrence matrix(GGCM)features are extracted from the zero point distribution diagrams,and the particle swarm optimization(PSO)-random forest(RF)algorithm is combined to realize the classification of faulty windings and fault types.Finally,the proposed method is validated using actual autotransformer fault cases.The results show that the zero point distributions in polar coordinates obtained by fast vector fitting can capture the subtle differences in the original frequency response curves by combining amplitude-frequency and phase-frequency information.Compared with optimization algorithms such as cuckoo search and genetic algorithm,the PSO-RF algorithm maintains an accuracy rate consistently exceeding 93%in identifying winding faults and fault types of autotransformers.The analysis results of the proposed method are consistent with the tank lifting inspection results in real autotransformer fault cases.

钱国超;何顺;刘红文;胡锦;杨坤;王东阳

云南电网有限责任公司电力科学研究院,云南 昆明 650032云南电网有限责任公司电力科学研究院,云南 昆明 650032云南电网有限责任公司电力科学研究院,云南 昆明 650032云南电网有限责任公司电力科学研究院,云南 昆明 650032云南电网有限责任公司电力科学研究院,云南 昆明 650032西南交通大学电气工程学院,四川 成都 611756

信息技术与安全科学

自耦变压器(AT)频率响应分析零点分布多重故障矢量匹配随机森林(RF)

autotransformer(AT)frequency response analysiszero point distributionmultiple faultsvector fittingrandom forest(RF)

《电力工程技术》 2026 (3)

73-84,12

国家自然科学基金资助项目(52337005)

10.12158/j.2096-3203.2026.03.009

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